004 Datenverarbeitung; Informatik
Refine
Has Fulltext
- yes (11)
Is part of the Bibliography
- yes (11)
Year of publication
- 2020 (11) (remove)
Document Type
- Journal article (9)
- Working Paper (2)
Language
- English (11)
Keywords
- Crowdsourcing (2)
- self-aware computing (2)
- Crowdsensing (1)
- GNSS/INS integrated navigation (1)
- INS/LIDAR integrated navigation (1)
- Network Measurements (1)
- QoE (1)
- Quality of Experience (1)
- Quality of Experience (QoE) (1)
- Quality of Service (QoS) (1)
- anomaly detection (1)
- anomaly prediction (1)
- architectural design (1)
- arithmetic calculations (1)
- artificial intelligence (1)
- autonomous (1)
- cloud-native (1)
- continuous-time SLAM (1)
- crowdsensing (1)
- crowdsourced QoE measurements (1)
- crowdsourced network measurements (1)
- cyber-physical systems (1)
- data stream processing (1)
- deformation-based method (1)
- endurance (1)
- exercise intensity (1)
- experimental evaluation (1)
- failure prediction (1)
- geospatial data (1)
- intelligent transportation systems (1)
- mHealth (1)
- machine learning (1)
- mapping (1)
- measurements (1)
- multirotors (1)
- neural architecture (1)
- neural networks (1)
- performance prediction (1)
- precision training (1)
- prediction (1)
- processing pipeline (1)
- quadcopters (1)
- quality assurance (1)
- quality evaluation (1)
- scalability (1)
- self-adaptive (1)
- self-adaptive systems (1)
- self-aware computing systems (1)
- self-managing systems (1)
- sensor networks (1)
- stream processing (1)
- survey (1)
- switching navigation (1)
- taxonomy (1)
- time calibration (1)
- tinnitus (1)
- unmanned aerial vehicles (1)
- vehicular navigation (1)
- wearable (1)
For machine manufacturing companies, besides the production of high quality and reliable machines, requirements have emerged to maintain machine-related aspects through digital services. The development of such services in the field of the Industrial Internet of Things (IIoT) is dealing with solutions such as effective condition monitoring and predictive maintenance. However, appropriate data sources are needed on which digital services can be technically based. As many powerful and cheap sensors have been introduced over the last years, their integration into complex machines is promising for developing digital services for various scenarios. It is apparent that for components handling recorded data of these sensors they must usually deal with large amounts of data. In particular, the labeling of raw sensor data must be furthered by a technical solution. To deal with these data handling challenges in a generic way, a sensor processing pipeline (SPP) was developed, which provides effective methods to capture, process, store, and visualize raw sensor data based on a processing chain. Based on the example of a machine manufacturing company, the SPP approach is presented in this work. For the company involved, the approach has revealed promising results.